深度学习克服布里渊光学时域分析中的非局部效应

IF 4.1 1区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Journal of Lightwave Technology Pub Date : 2024-04-30 DOI:10.1109/JLT.2024.3395456
Yuhao Qian;Guijiang Yang;Zhenggang Lian;Deming Liu;Liang Wang;Ming Tang
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引用次数: 0

摘要

有害非局部效应(NLE)会导致致命的测量误差,并限制远距离布里渊光学时域分析(BOTDA)传感系统的允许光功率。非局部效应发生在单边带布里渊光时域分析(SSB-BOTDA)和双边带布里渊光时域分析(DSB-BOTDA)中,分别是一阶非局部效应和二阶非局部效应。克服 NLE 的传统方法通常需要修改系统设置,这大大增加了系统的复杂性和成本。在此,我们提出了一种由深度学习方法(即深度神经网络(DNN))驱动的 BOTDA 系统,无需对系统进行任何修改即可克服一阶 NLE 和二阶 NLE。分别推导出了一阶 NLE 和二阶 NLE 下布里渊增益谱(BGS)曲线的分析表达式,并将其用于生成用于 DNN 训练的训练数据集。已成功证明,无论系统中是否存在 NLE,单一 DNN 模型都能从正常 BGS 和畸变 BGS 中准确提取布里渊频移 (BFS)。通过仿真和实验,验证了所提出的 DNN 的性能,并与传统的洛伦兹曲线拟合(LCF)方法进行了比较。在 SSB-BOTDA 中的强一阶 NLE 条件下,使用我们的 DNN 将温度均方根误差 (RMSE) 降低了 6.5 倍,最大允许探头功率提高了 16.5 dB。在传感距离为 50 千米的 DSB-BOTDA 中的强二阶 NLE 条件下,DNN 将温度误差降低了 6.1 倍,每个边带的最大允许探测功率提高了 11 分贝。DNN 模型不需要任何关于数据是否存在 NLE 的先验知识,因此单个 DNN 模型就足以在无 NLE 和有 NLE 的条件下准确提取 BFS,这使得该方案非常实用,并能以较低的成本大大提高系统对 NLE 的耐受性。
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Deep Learning to Overcome Non-Local Effect in Brillouin Optical Time-Domain Analysis
Detrimental non-local effect (NLE) causes fatal measurement errors and limits the allowed optical power in long-range Brillouin optical time-domain analysis (BOTDA) sensing system. NLE occurs in both the single-sideband BOTDA (SSB-BOTDA) and dual-sideband BOTDA (DSB-BOTDA), namely the 1st-order NLE and 2nd-order NLE, respectively. Conventional methods to overcome NLE usually require modification of system setup which greatly increases the system complexity and cost. Here we have proposed a BOTDA system powered by deep learning method, i.e., deep neural network (DNN), to overcome both the 1st-order NLE and 2nd-order NLE without any system modification. Analytical expressions of Brillouin gain spectrum (BGS) profile under the 1st-order NLE and 2nd-order NLE are derived, respectively, which are used to generate training dataset for DNN training. A single DNN model has been successfully demonstrated to be capable of accurately extracting the Brillouin frequency shift (BFS) from the normal BGS and distorted BGS, no matter whether NLE exists or not in the system. Through both simulation and experiment, the performance of the proposed DNN is verified and compared with that of conventional Lorentzian curve fitting (LCF) method. Under strong 1st-order NLE in the SSB-BOTDA, the use of our DNN reduces the temperature root mean square error (RMSE) by 6.5 times, and the maximum allowed probe power is increased by 16.5 dB. Under strong 2nd-order NLE in the DSB-BOTDA with 50 km sensing distance, the DNN reduces the temperature error by 6.1 times, and the maximum allowed probe power per sideband is increased by 11 dB. The DNN model does not need any prior knowledge on whether the data has NLE or not, thus a single DNN model is enough to accurately extract BFS under both conditions without and with NLE, which makes the scheme practical and can greatly improve the system tolerance to NLE with low cost.
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来源期刊
Journal of Lightwave Technology
Journal of Lightwave Technology 工程技术-工程:电子与电气
CiteScore
9.40
自引率
14.90%
发文量
936
审稿时长
3.9 months
期刊介绍: The Journal of Lightwave Technology is comprised of original contributions, both regular papers and letters, covering work in all aspects of optical guided-wave science, technology, and engineering. Manuscripts are solicited which report original theoretical and/or experimental results which advance the technological base of guided-wave technology. Tutorial and review papers are by invitation only. Topics of interest include the following: fiber and cable technologies, active and passive guided-wave componentry (light sources, detectors, repeaters, switches, fiber sensors, etc.); integrated optics and optoelectronics; and systems, subsystems, new applications and unique field trials. System oriented manuscripts should be concerned with systems which perform a function not previously available, out-perform previously established systems, or represent enhancements in the state of the art in general.
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